Detecting network-wide and router-specific misconfigurations through data mining

Franck Le, Sihyung Lee, Tina Wong, Hyong S. Kim, Darrell Newcomb

Research output: Contribution to journalArticlepeer-review

36 Scopus citations

Abstract

Recent studies have shown that router misconfigurations are common and can have dramatic consequences to the operations of a network. Misconfigurations can compromise the security of an entire network or even cause global disruptions to Internet connectivity. Several solutions have been proposed. They can detect a number of problems in real configuration files. However, these solutions share a common limitation: they are based on rules which need to be known beforehand. Violations of these rules are deemed misconfigurations. As policies typically differ among networks, these approaches are limited in the scope of mistakes they can detect. In this paper, we address the problem of router misconfigurations using data mining. We apply association rules mining to the configuration files of routers across an administrative domain to discover local, network-specific policies. Deviations from these local policies are potential misconfigurations. We have evaluated our scheme on configuration files from a large state-wide network provider, a large university campus and a high-performance research network. In this evaluation, we focused on three aspects of the configurations: user accounts, interfaces and BGP sessions. User accounts specify the users that can access the router and define the authorized commands. Interfaces are the ports used by routers to connect to different networks. Each interface may support a number of services and run various routing protocols. BGP sessions are the connections with neighboring autonomous systems (AS). BGP sessions implement the routing policies which select the routes that are filtered and the ones that are advertised to the BGP neighbors. We included the routing policies in our study. The results are promising. We discovered a number of errors that were confirmed and corrected by the network administrators. These errors would have been difficult to detect with current predefined rule-based approaches.

Original languageEnglish
Pages (from-to)66-79
Number of pages14
JournalIEEE/ACM Transactions on Networking
Volume17
Issue number1
DOIs
StatePublished - 2009

Keywords

  • Association rules mining
  • Error detection
  • Network management
  • Static analysis

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